Implicit Transfer Operator Learning: Multiple Time-Resolution Models for Molecular Dynamics
–Neural Information Processing Systems
Computing properties of molecular systems rely on estimating expectations of the (unnormalized) Boltzmann distribution. Molecular dynamics (MD) is a broadly adopted technique to approximate such quantities. However, stable simulations rely on very small integration time-steps ( 10 {-15}\,\mathrm{s}), whereas convergence of some moments, e.g. Here, we present Implicit Transfer Operator (ITO) Learning, a framework to learn surrogates of the simulation process with multiple time-resolutions. We implement ITO with denoising diffusion probabilistic models with a new SE(3) equivariant architecture and show the resulting models can generate self-consistent stochastic dynamics across multiple time-scales, even when the system is only partially observed. Finally, we present a coarse-grained CG-SE3-ITO model which can quantitatively model all-atom molecular dynamics using only coarse molecular representations.
Neural Information Processing Systems
Jan-19-2025, 06:26:13 GMT
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